以下为卖家选择提供的数据验证报告:
数据描述
Context
This dataset was built as a supplementary to "[European Soccer Database][1]
". It includes data dictionary, extraction of detailed match information previously contains in XML columns.
Content
- PositionReference.csv: A reference of position x, y and map them to actual position in a play court.
- DataDictionary.xlsx: Data dictionary for all XML columns in "Match" data table.
- card_detail.csv: Detailed XML information extracted form "card" column in "Match" data table.
- corner_detail.csv: Detailed XML information extracted form "corner" column in "Match" data table.
- cross_detail.csv: Detailed XML information extracted form "cross" column in "Match" data table.
- foulcommit_detail.csv: Detailed XML information extracted form "foulcommit" column in "Match" data table.
- goal_detail.csv: Detailed XML information extracted form "goal" column in "Match" data table.
- possession_detail.csv: Detailed XML information extracted form "possession" column in "Match" data table.
- shotoff_detail.csv: Detailed XML information extracted form "shotoffl" column in "Match" data table.
- shoton_detail.csv: Detailed XML information extracted form "shoton" column in "Match" data table.
Acknowledgements
Original data comes from [European Soccer Database][1]
by Hugo Mathien. I personally thank him for all his efforts.
Inspiration
Since this is a open dataset with no specific goals / objectives, I would like to explore the following aspects by data analytics / data mining:
- Team statistics Including overall team ranking, team points, winning possibility, team lineup, etc. Mostly descriptive analysis.
- Team Transferring Track and study team players transferring in the market. Study team's strength and weakness, construct models to suggest best fit players to the team.
- Player Statistics Summarize player's performance (goal, assist, cross, corner, pass, block, etc). Identify key factors of players by position. Based on these factors, evaluate player's characteristics.
- Player Evolution Construct model to predict player's rating of future.
- New Player's Template Identify template and model player for young players cater to their positions and characteristics.
- Market Value Prediction Predict player's market value based on player's capacity and performance.
- The Winning Eleven Given a season / league / other criteria, propose the best 11 players as a team based on their capacity and performance.

European Soccer Database Supplementary
13.12MB
申请报告